Title :
Bayesian MMSE estimation of classification error and performance on real genomic data
Author :
Dalton, Lori A. ; Dougherty, Edward R.
Author_Institution :
Dept. of Electr. & Comput. Eng., Texas A&M Univ., College Station, TX, USA
Abstract :
Small sample classifier design has become a major issue in the biological and medical communities, owing to the recent development of high-throughput genomic and proteomic technologies. And as the problem of estimating classifier error is already handicapped by limited available information, it is further compounded by the necessity of reusing training-data for error estimation. Due to the difficulty of error estimation, all currently popular techniques have been heuristically devised, rather than rigorously designed based on statistical inference and optimization. However, a recently proposed error estimator has placed the problem into an optimal mean-square error (MSE) signal estimation framework in the presence of uncertainty. This results in a Bayesian approach to error estimation based on a parameterized family of feature-label distributions. These Bayesian error estimators are optimal when averaged over a given family of distributions, unbiased when averaged over a given family and all samples, and analytically address a trade-off between robustness (modeling assumptions) and accuracy (minimum mean-square error). Closed form solutions have been provided for two important examples: the discrete classification problem and linear classification of Gaussian distributions. Here we discuss the Bayesian minimum mean-square error (MMSE) error estimator and demonstrate performance on real biological data under Gaussian modeling assumptions.
Keywords :
Bayes methods; bioinformatics; genomics; least mean squares methods; pattern classification; proteomics; Bayesian MMSE estimation; Gaussian modeling; classification error; discrete classification problem; feature-label distributions; high-throughput genomics; linear classification; minimum mean-square error; optimal mean-square error; proteomics; real genomic data; small sample classifier design; statistical inference; Bayesian methods; Bioinformatics; Data models; Error analysis; Estimation; Genomics;
Conference_Titel :
Genomic Signal Processing and Statistics (GENSIPS), 2010 IEEE International Workshop on
Conference_Location :
Cold Spring Harbor, NY
Print_ISBN :
978-1-61284-791-7
DOI :
10.1109/GENSIPS.2010.5719674